vtreat
Data transformer
Tool for transforming messy data into suitable format for machine learning
vtreat is a data frame processor/conditioner that prepares real-world data for predictive modeling in a statistically sound manner. Distributed under choice of GPL-2 or GPL-3 license.
283 stars
22 watching
45 forks
Language: HTML
last commit: 5 months ago categorical-variablesmachine-learning-algorithmsnested-modelsprepare-datar
Related projects:
Repository | Description | Stars |
---|---|---|
gordonhu608/mqt-llava | A vision-language model that uses a query transformer to encode images as visual tokens and allows flexible choice of the number of visual tokens. | 97 |
vchitect/vbench | A tool for evaluating and benchmarking video generative models in computer vision and artificial intelligence | 576 |
nvlabs/relvit | A deep learning framework designed to improve visual reasoning capabilities by utilizing concepts and semantic relations. | 64 |
rucaibox/comvint | Creating synthetic visual reasoning instructions to improve the performance of large language models on image-related tasks | 18 |
reedscot/cvpr2016 | A system for learning deep representations of fine-grained visual descriptions from images | 334 |
whai362/pvt | An implementation of Pyramid Vision Transformers for image classification, object detection, and semantic segmentation tasks | 1,728 |
matlab-deep-learning/wav2vec-2.0 | Enables speech-to-text transcription using a pre-trained neural network model in MATLAB. | 8 |
0xvavaldi/ruleprocessory | Tool to process and transform wordlists by applying complex rules for password cracking | 30 |
betwixt-labs/dot-env-generator | A source generator that transforms environment variables into constants in C# code | 32 |
kunpengli1994/vsrn | An open-source PyTorch implementation of a visual semantic reasoning model for image-text matching | 294 |
vlfeat/matconvnet | A MATLAB toolbox implementing Convolutional Neural Networks for computer vision applications. | 1,402 |
boredbird/woe | Tools for transforming Variable Importance (VI) into Worth of Evidence (WOE) scores used in credit scoring models. | 256 |
jpeg729/pytorch_bits | An experimental framework for developing and testing deep learning models on time-series prediction tasks | 79 |
danieljf24/w2vv | A deep neural network architecture that predicts visual features from text to improve image and video caption retrieval | 69 |
telly/mrvector | A 7+ backport of VectorDrawable with limited Android compatibility and support | 654 |